BEGIN:VCALENDAR VERSION:2.0 PRODID:Linklings LLC BEGIN:VTIMEZONE TZID:Asia/Tokyo X-LIC-LOCATION:Asia/Tokyo BEGIN:STANDARD TZOFFSETFROM:+0900 TZOFFSETTO:+0900 TZNAME:JST DTSTART:18871231T000000 END:STANDARD END:VTIMEZONE BEGIN:VEVENT DTSTAMP:20250110T023312Z LOCATION:Hall B5 (1)\, B Block\, Level 5 DTSTART;TZID=Asia/Tokyo:20241205T131100 DTEND;TZID=Asia/Tokyo:20241205T132300 UID:siggraphasia_SIGGRAPH Asia 2024_sess130_papers_1233@linklings.com SUMMARY:NASM: Neural Anisotropic Surface Meshing DESCRIPTION:Technical Papers\n\nHongbo Li, Haikuan Zhu, and Sikai Zhong (W ayne State University); Ningna Wang (University of Texas at Dallas); Cheng Lin (University of Hong Kong); Xiaohu Guo (University of Texas at Dallas) ; Shiqing Xin (Shandong University); Wenping Wang (Texas A&M University); and Jing Hua and Zichun Zhong (Wayne State University)\n\nThis paper intro duces a new learning-based method, NASM, for anisotropic surface meshing. Our key idea is to propose a graph neural network to embed an input mesh i nto a high-dimensional (high-d) Euclidean embedding space to preserve curv ature-based anisotropic metric by using a dot product loss between high-d edge vectors. This can dramatically reduce the computational time and incr ease the scalability. Then, we propose a novel feature-sensitive remeshing on the generated high-d embedding to automatically capture sharp geometri c features. We define a high-d normal metric, and then derive an automatic differentiation on a high-d centroidal Voronoi tessellation (CVT) optimiz ation with the normal metric to simultaneously preserve geometric features and curvature anisotropy that exhibit in the original 3D shapes. To our k nowledge, this is the first time that a deep learning framework and a larg e dataset are proposed to construct a high-d Euclidean embedding space for 3D anisotropic surface meshing. Experimental results are evaluated and co mpared with the state-of-the-art in anisotropic surface meshing on a large number of surface models from Thingi10K dataset as well as tested on exte nsive unseen 3D shapes from Multi-Garment Network dataset and FAUST human dataset.\n\nRegistration Category: Full Access, Full Access Supporter\n\nL anguage Format: English Language\n\nSession Chair: Noam Aigerman (Universi ty of Montreal) URL:https://asia.siggraph.org/2024/program/?id=papers_1233&sess=sess130 END:VEVENT END:VCALENDAR